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Incremental processing of temporal observations in Model-Based Reasoning

Published: 01 January 2007 Publication History

Abstract

Observations play a major role in Model-Based Reasoning. In an uncertain, event-driven perspective, the observation of a dynamical system over a time interval is not perceived as a totally-ordered sequence of observable labels but, rather, as a directed acyclic graph. Problem solving, however, requires generating a surrogate of such a graph, the index space. In addition, when tasks such as monitoring and diagnosis are carried out, the observation hypothesized so far has to be integrated at the reception of a new fragment of observation. This translates to the need for computing a new index space every time. Since such a computation is expensive, a naive generation of the index space from scratch at the occurrence of each observation fragment becomes prohibitive in real applications. To cope with this problem, the paper introduces an incremental technique for efficiently modeling and indexing temporal observations.

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Cited By

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  • (2018)From diagnosis of active systems to incremental determinization of finite acyclic automataAI Communications10.5555/2594602.259460526:4(373-393)Online publication date: 26-Dec-2018
  • (2008)Model-Based Diagnosis of Discrete Event Systems with an Incomplete System ModelProceedings of the 2008 conference on ECAI 2008: 18th European Conference on Artificial Intelligence10.5555/1567281.1567326(189-193)Online publication date: 27-Jun-2008
  • (2008)On-line diagnosis of discrete event systems with two successive temporal windowsAI Communications10.5555/1487691.148769721:4(249-262)Online publication date: 1-Dec-2008

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Published In

cover image AI Communications
AI Communications  Volume 20, Issue 1
Model-Based Systems
January 2007
64 pages

Publisher

IOS Press

Netherlands

Publication History

Published: 01 January 2007

Author Tags

  1. Temporal observations
  2. automata
  3. indexing

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Cited By

View all
  • (2018)From diagnosis of active systems to incremental determinization of finite acyclic automataAI Communications10.5555/2594602.259460526:4(373-393)Online publication date: 26-Dec-2018
  • (2008)Model-Based Diagnosis of Discrete Event Systems with an Incomplete System ModelProceedings of the 2008 conference on ECAI 2008: 18th European Conference on Artificial Intelligence10.5555/1567281.1567326(189-193)Online publication date: 27-Jun-2008
  • (2008)On-line diagnosis of discrete event systems with two successive temporal windowsAI Communications10.5555/1487691.148769721:4(249-262)Online publication date: 1-Dec-2008

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